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A Surrogate Model Assisted Quantum-inspired Evolutionary Algorithm for Hyperparameter Optimization in Machine Learning

机译:代理模型辅助量子启动进化进化算法在机器学习中的超参数优化

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Machine learning techniques have achieved remarkable development in recent years. However, the performance of many machine learning models usually involves careful tuning of hyperparameters. The hyperparameter optimization (HPO) is usually a high-dimensional black box optimization problem and often faces expensive function evaluations. Besides, the task of HPO has gained great attention in academy and industry. In this paper, a novel method for hyperparameter optimization is proposed, referred to as surrogate model assisted quantum-inspired evolutionary algorithm (SA-QEA), which incorporates the principles of quantum-inspired evolutionary algorithm (QEA) and an efficient search framework based on a surrogate model. In the proposed algorithm, we adopt a single individual QEA with neighborhood exploration as the evolution scheme to generate the candidate solutions, and multivariate adaptive regression splines (MARS) is used as a surrogate to approximate the objective function around the individuals. Through conducting comprehensive experimental evaluations on two benchmark problems and three machine learning models, we test our proposed algorithm and compare it with other widely used methods. The results achieve competitive performance and demonstrate the effectiveness of SA-QEA for hyperparameter optimization.
机译:机器学习技术近年来取得了显着的发展。然而,许多机器学习模型的性能通常涉及仔细调整普瑞切格。 HyperParameter Optimization(HPO)通常是高维黑匣子优化问题,并且通常面临昂贵的功能评估。此外,HPO的任务在学院和工业中取得了很大的关注。在本文中,提出了一种用于近双计优化的新方法,称为代理模型辅助量子启动进化算法(SA-QEA),其包括量子启动的进化算法(QEA)的原理和基于的有效搜索框架代理模型。在所提出的算法中,我们采用单个单独的QEA,作为生成候选解决方案的邻域探索的单个单独的QEA,并且多变量自适应回归花键(MARS)用作替代,以近似于各方的目标函数。通过对两个基准问题和三种机器学习模型进行全面的实验评估,我们测试所提出的算法,并将其与其他广泛使用的方法进行比较。结果实现了竞争性能,并展示了Sa-QEA对Quand参数优化的有效性。

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